预测山羊饲料和补充剂之间的关联效应

IF 1.6 3区 农林科学 Q2 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Yoko Tsukahara , Terry A. Gipson , Ryszard Puchala , Arthur L. Goetsch
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引用次数: 0

摘要

我们利用兰斯顿大学交互式营养计算系统(LINC,http://40.65.112.141/)开发了预测山羊基础饲草和补充饲料之间关联效应的方程,以改进日粮配方。通过对山羊自由采食饲草与补充或不补充饲草的营养研究进行文献调查,建立了一个包含 135 个处理平均观测值的数据库,这些观测值来自 26 篇出版物,代表了 503 只动物的测量结果。数据库根据饲草 CP 浓度分为三个数据集(低:6%;中:6 - 10%;高:10%)。这些数据集用于建立正负关联效应方程。根据同样按代谢体重缩放的补充剂 ME 摄入量的潜在变量(MEIMBWSUP;kJ/kg BW0.75),预测了补充剂导致的牧草 ME 摄入量相对于代谢体重的变化(MEIMBWFOR;kJ/kg BW0.75)。75)、饲草 OM 消化率(OMDIGFOR;%)、CP 浓度(PTCPFOR;%)和 NDF 浓度(PTNDFFOR;% DM)、补饲 CP 浓度(PTCPSUP;%)和 ME 浓度(MECSUP;MJ/kg),以及这些变量的二次函数(MEIMBWSUP2、OMDIGFOR2、PTCPFOR2、PTNDFFOR2、PTCPSUP2 和 MECSUP2)。每个数据集的模型都是通过逐步回归和最小绝对收缩选择操作符(LASSO)这两种分析方法建立的。采用这两种方法建立的方程中,逐步回归法的变异最大(低度:MEIMBWFOR = 937 + 0.604 × MEIMBWSUP - 0.0018 × MEIMBWSUP2 - 0.105 × PTNDFFOR2; ARSq = 0.871, 中度:MEIMBWFOR = 1732):MEIMBWFOR=1732-0.579×MEIMBWSUP+40.9×PTCPFOR-62.4×OMDIGFOR+0.601×OMDIGFOR2;ARSq=0.826,高:MEIMBWFOR=51.0-0.00162×MEIMBWSUP2+8.42×PTNDFFOR;ARSq=0.628)。两种分析方法都为每个数据集选择了相似的变量,但不同数据集选择的变量有所不同。虽然每个数据集的拟合优度都相对较高,但它们的排名依次为 "低"、"中"、"高",表明 "低 "的稳健性最强,而 "高 "的影响因素最复杂。总之,针对低、中、高CP浓度的基础饲草开发的预测山羊食用的基础饲草和补充剂之间关联效应的方程在日粮配方工具(如 LINC)中应该是有用的。未来的研究应考虑更广泛的条件,如动物的生理状态(如生长和成年)、生产类型(如奶和肉)以及补充剂的碳水化合物组成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of associative effects between forages and supplements in goats

Equations to predict associative effects between basal forages and supplemental feedstuffs for goats were developed to improve diet formulation with the Langston University Interactive Nutrient Calculation system (LINC, http://40.65.112.141/). A literature survey of goat nutrition studies with ad libitum forage intake with or without supplementation was conducted, resulting in a database with 135 treatment mean observations, representing measures from 503 animals and derived from 26 publications. The database was divided into three datasets based on forage CP concentration (Low: < 6%, Moderate: 6 – 10%, and High: > 10%). The datasets were used to develop equations addressing positive and negative associative effects. Change in forage ME intake relative to metabolic BW (MEIMBWFOR; kJ/kg BW0.75) due to supplementation was predicted based on potential variables of supplement ME intake also scaled to metabolic BW (MEIMBWSUP; kJ/kg BW0.75), forage OM digestibility (OMDIGFOR; %), CP concentration (PTCPFOR; %), and NDF concentration (PTNDFFOR; % DM), supplement CP concentration (PTCPSUP; %) and ME concentration (MECSUP; MJ/kg), and quadratic functions of these variables (MEIMBWSUP2, OMDIGFOR2, PTCPFOR2, PTNDFFOR2, PTCPSUP2, and MECSUP2). Model development for each dataset was conducted by two analytical methods, stepwise regression and the Least Absolute Shrinkage Selection Operator (LASSO). Equations employing both methods were developed, with stepwise regression accounting for greatest variation (Low: MEIMBWFOR = 937 + 0.604 × MEIMBWSUP − 0.0018 × MEIMBWSUP2 – 0.105 × PTNDFFOR2; ARSq = 0.871, Moderate: MEIMBWFOR = 1732 − 0.579 × MEIMBWSUP + 40.9 × PTCPFOR − 62.4 × OMDIGFOR + 0.601 × OMDIGFOR2; ARSq = 0.826, and High: MEIMBWFOR = 51.0 − 0.00162 × MEIMBWSUP2 + 8.42 × PTNDFFOR; ARSq = 0.628). Similar variables were selected with both analytical methods for each dataset, but variables selected differed among datasets. Although goodness of fit measures were relatively high for each dataset, they ranked Low > Moderate > High, suggesting greatest robustness for Low and complexity in influencing factors for High. In conclusion, equations to predict associative effects between basal forages and supplements consumed by goats developed for basal forage with low, moderate, and high CP concentrations should be useful in diet formulation tools such as LINC. Future research should consider a wider array of conditions such as animal physiological status (e.g., growing and adult), type of production (e.g., milk and meat), and carbohydrate composition of supplements.

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来源期刊
Small Ruminant Research
Small Ruminant Research 农林科学-奶制品与动物科学
CiteScore
3.10
自引率
11.10%
发文量
210
审稿时长
12.5 weeks
期刊介绍: Small Ruminant Research publishes original, basic and applied research articles, technical notes, and review articles on research relating to goats, sheep, deer, the New World camelids llama, alpaca, vicuna and guanaco, and the Old World camels. Topics covered include nutrition, physiology, anatomy, genetics, microbiology, ethology, product technology, socio-economics, management, sustainability and environment, veterinary medicine and husbandry engineering.
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